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Multiple Choice Question Answering (MCQA)

A multiple-choice question (MCQ) is composed of two parts: a stem that identifies the question or problem, and a set of alternatives or possible answers that contain a key that is the best answer to the question, and a number of distractors that are plausible but incorrect answers to the question.

In a k-way MCQA task, a model is provided with a question q, a set of candidate options O = {O1, . . . , Ok}, and a supporting context for each option C = {C1, . . . , Ck}. The model needs to predict the correct answer option that is best supported by the given contexts.

Papers

Showing 3140 of 65 papers

TitleStatusHype
MMM: Multi-stage Multi-task Learning for Multi-choice Reading ComprehensionCode0
Artifacts or Abduction: How Do LLMs Answer Multiple-Choice Questions Without the Question?Code0
Question-Aware Knowledge Graph Prompting for Enhancing Large Language ModelsCode0
Role of Language Relatedness in Multilingual Fine-tuning of Language Models: A Case Study in Indo-Aryan LanguagesCode0
Differentiating Choices via Commonality for Multiple-Choice Question AnsweringCode0
Does Transliteration Help Multilingual Language Modeling?Code0
EconLogicQA: A Question-Answering Benchmark for Evaluating Large Language Models in Economic Sequential ReasoningCode0
Long Story Short: Story-level Video Understanding from 20K Short Films0
Context-guided Triple Matching for Multiple Choice Question Answering0
LLM Distillation for Efficient Few-Shot Multiple Choice Question Answering0
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